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Journal Article

The interpersonal entrainment in music performance data collection

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Polak,  Rainer
Department of Music, Max Planck Institute for Empirical Aesthetics, Max Planck Society;

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Jacoby,  Nori
Research Group Computational Auditory Perception, Max Planck Institute for Empirical Aesthetics, Max Planck Society;

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Citation

Clayton, M., Tarsitani, S., Jankowsky, R., Jure, L., Leante, L., Polak, R., et al. (2021). The interpersonal entrainment in music performance data collection. Empirical Musicology Review, 16(1), 65-84. doi:10.18061/emr.v16i1.7555.


Cite as: https://hdl.handle.net/21.11116/0000-0009-A9B8-9
Abstract
The Interpersonal Entrainment in Music Performance Data Collection (IEMPDC) comprises six related corpora of music research materials: Cuban Son & Salsa (CSS), European String Quartet (ESQ), Malian Jembe (MJ), North Indian Raga (NIR), Tunisian Stambeli (TS), and Uruguayan Candombe (UC). The core data for each corpus comprises media files and computationally extracted event onset timing data. Annotation of metrical structure and code used in the preparation of the collection is also shared. The collection is unprecedented in size and level of detail and represents a significant new resource for empirical and computational research in music. In this article we introduce the main features of the data collection and the methods used in its preparation. Details of technical validation procedures and notes on data visualization are available as Appendices. We also contextualize the collection in relation to developments in Open Science and Open Data, discussing important distinctions between the two related concepts.